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VUDENC: Vulnerability Detection with Deep Learning on a Natural Codebase for Python
2022
Context: Identifying potential vulnerable code is important to improve the security of our software systems. However, the manual detection of software vulnerabilities requires expert knowledge and is time-consuming, and must be supported by automated techniques. Objective: Such automated vulnerability detection techniques should achieve a high accuracy, point developers directly to the vulnerable code fragments, scale to real-world software, generalize across the boundaries of a specific
doi:10.48550/arxiv.2201.08441
fatcat:weu3i2besfdj3nommjltxaa3h4